Department of Chemical and Biological Engineering, University of Wisconsin-Madison, Madison, WI 53706-1607, USA.
Bull Math Biol. 2009 Oct;71(7):1671-92. doi: 10.1007/s11538-009-9419-5. Epub 2009 May 21.
By building kinetic models of biological networks one may advance the development of new modeling approaches while gaining insights into the biology. We focus here on building a stochastic kinetic model for the intracellular growth of vesicular stomatitis virus (VSV), a well-studied virus that encodes five genes. The essential network of VSV reactions creates challenges to stochastic simulation owing to (i) delayed reactions associated with transcription and genome replication, (ii) production of large numbers of intermediate proteins by translation, and (iii) the presence of highly reactive intermediates that rapidly fluctuate in their intracellular levels. We address these issues by developing a hybrid implementation of the model that combines a delayed stochastic simulation algorithm (DSSA) with Langevin equations to simulate the reactions that produce species in high numbers. Further, we employ a quasi-steady-state approximation (QSSA) to overcome the computational burden of small time steps caused by highly reactive species. The simulation is able to capture experimentally observed patterns of viral gene expression. Moreover, the simulation suggests that early levels of a low-abundance species, VSV L mRNA, play a key role in determining the production level of VSV genomes, transcripts, and proteins within an infected cell. Ultimately, these results suggest that stochastic gene expression contribute to the distribution of virus progeny yields from infected cells.
通过构建生物网络的动力学模型,人们可以推进新的建模方法的发展,同时深入了解生物学。我们专注于构建水疱性口炎病毒(VSV)的细胞内生长的随机动力学模型,VSV 是一种研究充分的病毒,它编码五个基因。VSV 反应的基本网络由于以下因素给随机模拟带来了挑战:(i)与转录和基因组复制相关的延迟反应,(ii)翻译产生大量中间蛋白,以及(iii)存在大量活性中间产物,其细胞内水平迅速波动。我们通过开发模型的混合实现来解决这些问题,该实现将延迟随机模拟算法(DSSA)与 Langevin 方程相结合,以模拟产生大量物种的反应。此外,我们采用准稳态近似(QSSA)来克服由高活性物种引起的小时间步长的计算负担。该模拟能够捕捉到病毒基因表达的实验观察模式。此外,模拟表明,低丰度物种 VSV L mRNA 的早期水平在确定感染细胞内 VSV 基因组、转录本和蛋白的产生水平方面起着关键作用。最终,这些结果表明随机基因表达有助于感染细胞中病毒后代产量的分布。